Combining Lexical Resources: Mapping Between PropBank and VerbNet

msra(2007)

引用 133|浏览57
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摘要
A wide variety of lexical resources have been created to allow au- tomatic semantic processing of novel text. However, each resource has its own practical and theoretical idiosyncracies, making it dicult to combine the information from dierent resources. We discuss the form that these dierences can take, and describe how we overcame some of them in creating a mapping between two important resources: Prop- Bank and VerbNet. Furthermore, we present experimental results that show that this mapping improves performance for PropBank-style se- mantic role labeling. Since PropBank was designed on a verb-by-verb basis, the argument labels Arg2 - Arg5 get used for a wide variety of argument roles. As a result, it can be dicult for automatic classifiers to learn to distinguish these arguments. But by using the mapping that we have created between PropBank and VerbNet, we can train a classifier based on VerbNet argument labels, which are more consistent and therefore easier to learn.
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